Classification of Malaria-Infected Cells Using Convolutional Neural Networks: An Image-Based Microscopic Approach to Aid Diagnosis
DOI:
https://doi.org/10.14738/abr.133.18433Keywords:
Malaria Diagnosis, Convolutional Neural Network, Machine Learning, Image ProcessingAbstract
This study investigates the use of convolutional neural networks to automatically detect malaria-infected cells in blood smear images, offering an alternative to manual diagnosis, which depends on specialized professionals and adequate infrastructure. Manual diagnosis is time-consuming and prone to human errors, especially in malaria-endemic regions with limited resources. Automated approaches based on convolutional neural networks provide a promising solution to optimize the diagnostic process and improve access to rapid treatment in remote areas. The research evaluates the performance of different convolutional neural network architectures for malaria diagnosis, following the Cross Industry Standard Process for Data Mining methodology to structure preprocessing, modeling, and model evaluation. Preprocessing involved normalization and data augmentation techniques to enhance sample quality and diversity. Two architectures were compared: a customized convolutional neural network designed to balance computational efficiency and accuracy, and an adapted VGG16, recognized for its advanced image feature extraction capabilities. Both models were trained and evaluated using a robust dataset of blood cell images. The customized network achieved 95.6% accuracy, outperforming similar models in the literature and demonstrating its practicality for low-resource settings. It also exhibited high precision, recall, and F1-score, ensuring reliable and balanced classification of infected and healthy cells. This approach reduces reliance on specialists and advanced equipment, making malaria diagnosis more accessible and efficient. The findings position the customized convolutional neural network as a viable solution for automated malaria diagnosis, combining simplicity with high performance and offering significant potential for improving healthcare in endemic regions.
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Copyright (c) 2025 Guilherme Silveira Coutinho, Erika Carlos Medeiros, Jorge Cavalcanti Barbosa Fônseca, Patrícia Cristina Moser, Rômulo César Dias de Andrade, Fernando Ferreira de Carvalho, Fernando Pontual de Souza Leão Júnior, Marco Antônio de Oliveira Domingues

This work is licensed under a Creative Commons Attribution 4.0 International License.